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Optimization of reducing acid of high-acid feedstock of biodiesel based on artificial neural networks

机译:基于人工神经网络的生物柴油高酸原料还原酸优化

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In order to get the optimal conditions of reaction, based on single factor experiment, oleic acid as the high-acid feedstock of biodiesel, orthogonal experiment and artificial neural networks were applied to optimize the synthetic conditions for reducing acid of high-acid biodiesel feedstock catalyzed by SO42−/ZrO2 solid super acid. Based on orthogonal experiment, the three layers error back-propagation network (BP network) model was trained to reflect correlation of experimental data. And the optimal conditions were obtained from this network model as follows: SO42−/ZrO2 solid super acid was 4%(W/W) as catalyst, reaction temperature was 97.5°C, reaction time was 180mins, and flow rate of gaseous methanol was 1.65 L-min−1. Under the optimal conditions, validated experiment showed that the conversion rate of oleic acid was 96.89%, and the relative error was 0.03% compared with the predicted value. Therefore, the optimal conditions obtained based on BP artificial neural network are reliable and have better practical value.
机译:为了获得最佳的反应条件,在单因素实验的基础上,以油酸为生物柴油的高酸原料,采用正交试验和人工神经网络,优化了催化还原高酸生物柴油原料酸的合成条件。由SO42- / ZrO2固体超强酸制成。基于正交实验,对三层误差反向传播网络(BP网络)模型进行了训练,以反映实验数据的相关性。并从该网络模型中获得了最佳条件如下:SO42- / ZrO2固体超强酸为催化剂的4%(W / W),反应温度为97.5°C,反应时间为180mins,且气态甲醇的流速为1.65 L-min-1。在最佳条件下,经过验证的实验表明,油酸的转化率为96.89%,相对误差为0.03%。因此,基于BP人工神经网络的最优条件是可靠的,具有较好的实用价值。

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